scholarly journals Research on Balance Control of Freestyle Skiing Aerial Skills Based on Ant Colony Algorithm

2021 ◽  
Vol 2021 ◽  
pp. 1-10
Author(s):  
Wang Jun ◽  
Wenli Song ◽  
Zhipeng Li

Aiming at solving the problem of poor performance of airborne freestyle skiing balance, this paper presents the research of airborne freestyle skiing balance control based on ant colony algorithm. On the basis of defining the trajectory division of the airborne balance of freestyle skiing and the track of the center of gravity of the human body, a sensor is used to collect the data of the airborne balance of freestyle skiing, and the moving average, denoising, and normalizing processes are done. The training label of the ant colony algorithm is made by the analog signal matrix, the implementation foreground of the key posture frame of freestyle skiing is extracted, the disturbed area in the key posture frame is removed by the clustering algorithm, and the key posture area of freestyle skiing is obtained. The incremental clustering of the data of the key posture area of freestyle skiing is conducted, the incremental posture data mining model of freestyle skiing is established, the mining parameters are input into the mining model, and the incremental data mining is realized by the ant colony algorithm to complete the research on the control of the airborne balance of freestyle skiing. The results show that the proposed method has good reliability, good convergence, and strong response ability.

2014 ◽  
Vol 633 ◽  
pp. 503-506
Author(s):  
Mei Lin Gao Sun ◽  
Ping Wu ◽  
Kai Li ◽  
Zhen Hua Gen

Intelligent classification is realized according to different components of featured information included in near infrared spectrum data of plants. The core of this theory is to research applications of ant colony algorithm in spectral analysis of plant leaves through theories and experiments. In aspect of theoretical exploration, the built-in function of clustering algorithm is used to compress and process data. In aspect of experimental research, the near infrared diffuse emission spectrum curves of the leaves of Cinnamomum camphora and Acer saccharum Marsh in two groups, which have 75 leaves respectively. Then, the obtained data are processed using ant colony algorithm and the same leaves can be classified as a class by ant colony clustering algorithm. Finally, the two groups of data are classified into two classes. Our results show the distinguishability can be 100%. Keywords:Near infrared spectroscopy; ant colony algorithm; clustering algorithm; signal processing


2020 ◽  
Vol 10 (1) ◽  
pp. 18-26
Author(s):  
Batuhan Gulluoglu ◽  
Evren Arifoglu ◽  
Adem Karahoca ◽  
Dilek Karahoca

It is extremely important for companies to set customer priorities and act in line with these priorities. The ant colony algorithm is used to perform customer segmentation. To do this, the shortest path approach was chosen. Besides, clustering is done by the Euclidean distance formula in the ant colony algorithm. The customer segmentation attributes are mostly related to the satisfaction factors, but some of them were eliminated by using ranker. These results are mostly related to the customer’s income, tenure, equip call card and reside. These attributes are the most important satisfaction factors not to lose customers as expected. There are many reasons in changing GSM operator for subscribers, and it is very important for companies to predict if subscriber will change GSM operator or not. For this reason, companies that give GSM services have to monitor subscribers’ behaviour and predict one step forward. In this study, changing subscribers’ GSM operator will be predicted by using data mining techniques. Keywords: Ant colony, churn management, customer segmentation, data mining. Categories: I.2.1, I.2


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